首页> 外文会议>Conference on Chemical and Biological Point Sensors for Homeland Defense; Oct 29-30, 2003; Providence, Rhode Island, USA >Application of partial least squares regression to the automatic detection of chemical vapors by passive infrared remotely sensed image data
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Application of partial least squares regression to the automatic detection of chemical vapors by passive infrared remotely sensed image data

机译:偏最小二乘回归在被动红外遥感图像数据自动检测化学蒸气中的应用

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摘要

Passive infrared (IR) remote sensors are gaining wide acceptance as an analytical tool for the remote detection of chemical vapor plumes. A common problem in plume detection for remotely sensed data is the ability to obtain a quality background signature. Many detection methods employ techniques to extract the signatures of the unknown components in order to determine the overall classification of a desired signature. However, this is often the most difficult step since no prior background knowledge is available. In this document, a novel implementation of partial least squares (PLS) regression is proposed for the automatic detection of dimethylmethylphosphonate (DMMP) vapors from remotely sensed hyperspectral image data. In this implementation, prior knowledge of the target signature is used to extract the analyte information directly from the scene. The various unknown and interfering signatures are implicitly modeled by the PLS algorithm as components that maximize a covariance criterion. This implicit modeling is beneficial since it allows for the detection of a single target chemical without the need for a separate background subtraction procedure.
机译:无源红外(IR)远程传感器已作为一种用于远程检测化学蒸汽羽流的分析工具而得到广泛认可。遥感数据羽流检测中的一个常见问题是获得高质量背景签名的能力。许多检测方法采用提取未知成分的特征的技术,以确定所需特征的整体分类。然而,由于没有现有的背景知识,这通常是最困难的步骤。在本文档中,提出了一种新的偏最小二乘(PLS)回归实现,用于从遥感高光谱图像数据中自动检测二甲基甲基膦酸酯(DMMP)蒸气。在该实现中,目标签名的先验知识用于直接从场景中提取分析物信息。 PLS算法将各种未知和干扰签名隐式地建模为最大化协方差准则的组件。这种隐式建模是有益的,因为它允许检测单个目标化学物质而无需单独的背景扣除程序。

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